1. Fuzzy rule-based models with randomized development mechanisms.
- Author
-
Hu, Xingchen, Pedrycz, Witold, and Wang, Dianhui
- Subjects
- *
FUZZY clustering technique , *RANDOMIZATION (Statistics) , *RANDOM variables , *FUZZY algorithms , *PARAMETERS (Statistics) - Abstract
Abstract Fuzzy rule-based models have attracted attention because of their modular architectures, well-developed design methodologies and practices as well as interpretability aspects. Methods exploiting factors of randomness offer significant efficiency and implementation simplicity that are essential in numerous application areas. In this study, we propose an original development of fuzzy rule-based models established with the aid of concepts of randomization algorithms. Several design strategies involving different random prototypes generation and basis functions approximation are studied. We investigate performance aspects of randomized rule-base and look at the performance versus the key components of the models such as the number of rules and the use of the randomized algorithms in the development. Furthermore, a comparative study is offered to quantify the efficiency of randomized algorithms. Experimental studies are reported for a series of publicly available data sets to illustrate the effectiveness of the proposed method and discuss its main features. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF